The AI soldier and the ethics of war

The rise of the machine soldier

For decades, Western militaries have led technological revolutions on the battlefield. From bows to tanks to drones, technological innovation has disrupted and redefined warfare for better or worse. However, the next evolution is not about weapons, it is about the soldier.

New AI-integrated systems such as Anduril’s EagleEye Helmet are transforming troops into data-driven nodes, capable of perceiving and responding with machine precision. This fusion of human and algorithmic capabilities is blurring the boundary between human roles and machine learning, redefining what it means to fight and to feel in war.

Today’s ‘AI soldier’ is more than just enhanced. They are networked, monitored, and optimised. Soldiers now have 3D optical displays that give them a god’s-eye view of combat, while real-time ‘guardian angel’ systems make decisions faster than any human brain can process.

Yet in this pursuit of efficiency, the soldier’s humanity and the rules-based order of war risk being sidelined in favour of computational power.

From soldier to avatar

In the emerging AI battlefield, the soldier increasingly resembles a character in a first-person shooter video game. There is an eerie overlap between AI soldier systems and the interface of video games, like Metal Gear Solid, where augmented players blend technology, violence, and moral ambiguity. The more intuitive and immersive the tech becomes, the easier it is to forget that killing is not a simulation.

By framing war through a heads-up display, AI gives troops an almost cinematic sense of control, and in turn, a detachment from their humanity, emotions, and the physical toll of killing. Soldiers with AI-enhanced senses operate through layers of mediated perception, acting on algorithmic prompts rather than their own moral intuition. When soldiers view the world through the lens of a machine, they risk feeling less like humans and more like avatars, designed to win, not to weigh the cost.

The integration of generative AI into national defence systems creates vulnerabilities, ranging from hacking decision-making systems to misaligned AI agents capable of escalating conflicts without human oversight. Ironically, the same guardrails that prevent civilian AI from encouraging violence cannot apply to systems built for lethal missions.

The ethical cost

Generative AI has redefined the nature of warfare, introducing lethal autonomy that challenges the very notion of ethics in combat. In theory, AI systems can uphold Western values and ethical principles, but in practice, the line between assistance and automation is dangerously thin.

When militaries walk this line, outsourcing their decision-making to neural networks, accountability becomes blurred. Without the basic principles and mechanisms of accountability in warfare, states risk the very foundation of rules-based order. AI may evolve the battlefield, but at the cost of diplomatic solutions and compliance with international law.  

AI does not experience fear, hesitation, or empathy, the very qualities that restrain human cruelty. By building systems that increase efficiency and reduce the soldier’s workload through automated targeting and route planning, we risk erasing the psychological distinction that once separated human war from machine-enabled extermination. Ethics, in this new battlescape, become just another setting in the AI control panel. 

The new war industry 

The defence sector is not merely adapting to AI. It is being rebuilt around it. Anduril, Palantir, and other defence tech corporations now compete with traditional military contractors by promising faster innovation through software.

As Anduril’s founder, Palmer Luckey, puts it, the goal is not to give soldiers a tool, but ‘a new teammate.’ The phrasing is telling, as it shifts the moral axis of warfare from command to collaboration between humans and machines.

The human-machine partnership built for lethality suggests that the military-industrial complex is evolving into a military-intelligence complex, where data is the new weapon, and human experience is just another metric to optimise.

The future battlefield 

If the past century’s wars were fought with machines, the next will likely be fought through them. Soldiers are becoming both operators and operated, which promises efficiency in war, but comes with the cost of human empathy.

When soldiers see through AI’s lens, feel through sensors, and act through algorithms, they stop being fully human combatants and start becoming playable characters in a geopolitical simulation. The question is not whether this future is coming; it is already here. 

There is a clear policy path forward, as states remain tethered to their international obligations. Before AI blurs the line between soldier and system, international law could enshrine a human-in-the-loop requirement for all lethal actions, while defence firms are compelled to maintain high ethical transparency standards.

The question now is whether humanity can still recognise itself once war feels like a game, or whether, without safeguards, it will remain present in war at all.

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The rise of large language models and the question of ownership

The divide defining AI’s future through large language models

What are large language models? Large language models (LLMs) are advanced AI systems that can understand and generate various types of content, including human-like text, images, video, and more audio.

The development of these large language models has reshaped ΑΙ from a specialised field into a social, economic, and political phenomenon. Systems such as GPT, Claude, Gemini, and Llama have become fundamental infrastructures for information processing, creative work, and automation.

Their rapid rise has generated an intense debate about who should control the most powerful linguistic tools ever built.

The distinction between open source and closed source models has become one of the defining divides in contemporary technology that will, undoubtedly, shape our societies.

gemini chatgpt meta AI antitrust trial

Open source models such as Meta’s Llama 3, Mistral, and Falcon offer public access to their code or weights, allowing developers to experiment, improve, and deploy them freely.

Closed source models, exemplified by OpenAI’s GPT series, Anthropic’s Claude, or Google’s Gemini, restrict access, keeping architectures and data proprietary.

Such a tension is not merely technical. It embodies two competing visions of knowledge production. One is oriented toward collective benefit and transparency, and the other toward commercial exclusivity and security of intellectual property.

The core question is whether language models should be treated as a global public good or as privately owned technologies governed by corporate rights. The answer to such a question carries implications for innovation, fairness, safety, and even democratic governance.

Innovation and market power in the AI economy

From an economic perspective, open and closed source models represent opposing approaches to innovation. Open models accelerate experimentation and lower entry barriers for small companies, researchers, and governments that lack access to massive computing resources.

They enable localised applications in diverse languages, sectors, and cultural contexts. Their openness supports decentralised innovation ecosystems similar to what Linux did for operating systems.

Closed models, however, maintain higher levels of quality control and often outperform open ones due to the scale of data and computing power behind them. Companies like OpenAI and Google argue that their proprietary control ensures security, prevents misuse, and finances further research.

The closed model thus creates a self-reinforcing cycle. Access to large datasets and computing leads to better models, which attract more revenue, which in turn funds even larger models.

The outcome of that has been the consolidation of AI power within a handful of corporations. Microsoft, Google, OpenAI, Meta, and a few start-ups have become the new gatekeepers of linguistic intelligence.

OpenAI Microsoft Cloud AI models

Such concentration raises concerns about market dominance, competitive exclusion, and digital dependency. Smaller economies and independent developers risk being relegated to consumers of foreign-made AI products, instead of being active participants in the creation of digital knowledge.

As so, open source LLMs represent a counterweight to Big Tech’s dominance. They allow local innovation and reduce dependency, especially for countries seeking technological sovereignty.

Yet open access also brings new risks, as the same tools that enable democratisation can be exploited for disinformation, deepfakes, or cybercrime.

Ethical and social aspects of openness

The ethical question surrounding LLMs is not limited to who can use them, but also to how they are trained. Closed models often rely on opaque datasets scraped from the internet, including copyrighted material and personal information.

Without transparency, it is impossible to assess whether training data respects privacy, consent, or intellectual property rights. Open source models, by contrast, offer partial visibility into their architecture and data curation processes, enabling community oversight and ethical scrutiny.

However, we have to keep in mind that openness does not automatically ensure fairness. Many open models still depend on large-scale web data that reproduce existing biases, stereotypes, and inequalities.

Open access also increases the risk of malicious content, such as generating hate speech, misinformation, or automated propaganda. The balance between openness and safety has therefore become one of the most delicate ethical frontiers in AI governance.

Socially, open LLMs can empower education, research, and digital participation. They allow low-resource languages to be modelled, minority groups to build culturally aligned systems, and academic researchers to experiment without licensing restrictions.

ai in us education

They represent a vision of AI as a collaborative human project rather than a proprietary service.

Yet they also redistribute responsibility: when anyone can deploy a powerful model, accountability becomes diffuse. The challenge lies in preserving the benefits of openness while establishing shared norms for responsible use.

The legal and intellectual property dilemma

Intellectual property law was not designed for systems that learn from millions of copyrighted works without direct authorisation.

Closed source developers defend their models as transformative works under fair use doctrines, while content creators demand compensation or licensing mechanisms.

3d illustration folder focus tab with word infringement conceptual image copyright law

The dispute has already reached courts, as artists, authors, and media organisations sue AI companies for unauthorised use of their material.

Open source further complicates the picture. When model weights are released freely, the question arises of who holds responsibility for derivative works and whether open access violates existing copyrights.

Some open licences now include clauses prohibiting harmful or unlawful use, blurring the line between openness and control. Legal scholars argue that a new framework is needed to govern machine learning datasets and outputs, one that recognises both the collective nature of data and the individual rights embedded in it.

At stake is not only financial compensation but the broader question of data ownership in the digital age. We need to question ourselves. If data is the raw material of intelligence, should it remain the property of a few corporations or be treated as a shared global resource?

Economic equity and access to computational power

Even the most open model requires massive computational infrastructure to train and run effectively. Access to GPUs, cloud resources, and data pipelines remains concentrated among the same corporations that dominate the closed model ecosystem.

Thus, openness in code does not necessarily translate into openness in practice.

Developing nations, universities, and public institutions often lack the financial and technical means to exploit open models at scale. Such an asymmetry creates a form of digital neo-dependency: the code is public, but the hardware is private.

For AI to function as a genuine global public good, investments in open computing infrastructure, public datasets, and shared research facilities are essential. Initiatives such as the EU’s AI-on-demand platform or the UN’s efforts for inclusive digital development reflect attempts to build such foundations.

3d united nations flag waving wind with modern skyscraper city close up un banner blowing soft smooth silk cloth fabric texture ensign background 1

The economic stakes extend beyond access to infrastructure. LLMs are becoming the backbone of new productivity tools, from customer service bots to automated research assistants.

Whoever controls them will shape the future division of digital labour. Open models could allow local companies to retain more economic value and cultural autonomy, while closed models risk deepening global inequalities.

Governance, regulation, and the search for balance

Governments face a difficult task of regulating a technology that evolves faster than policy. For example, the EU AI Act, US executive orders on trustworthy AI, and China’s generative AI regulations all address questions of transparency, accountability, and safety.

Yet few explicitly differentiate between open and closed models.

The open source community resists excessive regulation, arguing that heavy compliance requirements could suffocate innovation and concentrate power even further in large corporations that can afford legal compliance.

On the other hand, policymakers worry that uncontrolled distribution of powerful models could facilitate malicious use. The emerging consensus suggests that regulation should focus not on the source model itself but on the context of its deployment and the potential harms it may cause.

An additional governance question concerns international cooperation. AI’s global nature demands coordination on safety standards, data sharing, and intellectual property reform.

The absence of such alignment risks a fragmented world where closed models dominate wealthy regions while open ones, potentially less safe, spread elsewhere. Finding equilibrium requires mutual trust and shared principles for responsible innovation.

The cultural and cognitive dimension of openness

Beyond technical and legal debates, the divide between open and closed models reflects competing cultural values. Open source embodies the ideals of transparency, collaboration, and communal ownership of knowledge.

Closed source represents discipline, control, and the pursuit of profit-driven excellence. Both cultures have contributed to technological progress, and both have drawbacks.

From a cognitive perspective, open LLMs can enhance human learning by enabling broader experimentation, while closed ones can limit exploration to predefined interfaces. Yet too much openness may also encourage cognitive offloading, where users rely on AI systems without developing independent judgment.

Ai brain hallucinate

Therefore, societies must cultivate digital literacy alongside technical accessibility, ensuring that AI supports human reasoning rather than replaces it.

The way societies integrate LLMs will influence how people perceive knowledge, authority, and creativity. When language itself becomes a product of machines, questions about authenticity, originality, and intellectual labour take on new meaning.

Whether open or closed, models shape collective understanding of truth, expression, and imagination for our societies.

Toward a hybrid future

The polarisation we are presenting here, between open and closed approaches, may be unsustainable in the long run. A hybrid model is emerging, where partially open architectures coexist with protected components.

Companies like Meta release open weights but restrict commercial use, while others provide APIs for experimentation without revealing the underlying code. Such hybrid frameworks aim to combine accountability with safety and commercial viability with transparency.

The future equilibrium is likely to depend on international collaboration and new institutional models. Public–private partnerships, cooperative licensing, and global research consortia could ensure that LLM development serves both the public interest and corporate sustainability.

A system of layered access (where different levels of openness correspond to specific responsibilities) may become the standard.

google translate ai language model

Ultimately, the choice between open and closed models reflects humanity’s broader negotiation between collective welfare and private gain.

Just as the internet or many other emerging technologies evolved through the tension between openness and commercialisation, the future of language models will be defined by how societies manage the boundary between shared knowledge and proprietary intelligence.

So, in conclusion, the debate between open and closed source LLMs is not merely technical.

As we have already mentioned, it embodies the broader conflict between public good and private control, between the democratisation of intelligence and the concentration of digital power.

Open models promote transparency, innovation, and inclusivity, but pose challenges in terms of safety, legality, and accountability. Closed models offer stability, quality, and economic incentive, yet risk monopolising a transformative resource so crucial in our quest for constant human progression.

Finding equilibrium requires rethinking the governance of knowledge itself. Language models should neither be owned solely by corporations nor be released without responsibility. They should be governed as shared infrastructures of thought, supported by transparent institutions and equitable access to computing power.

Only through such a balance can AI evolve as a force that strengthens, rather than divides, our societies and improves our daily lives.

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Most transformative decade begins as Kurzweil’s AI vision unfolds

AI no longer belongs to speculative fiction or distant possibility. In many ways, it has arrived. From machine translation and real-time voice synthesis to medical diagnostics and language generation, today’s systems perform tasks once reserved for human cognition. For those watching closely, this shift feels less like a surprise and more like a milestone reached.

Ray Kurzweil, one of the most prominent futurists of the past half-century, predicted much of what is now unfolding. In 1999, his book The Age of Spiritual Machines laid a roadmap for how computers would grow exponentially in power and eventually match and surpass human capabilities. Over two decades later, many of his projections for the 2020s have materialised with unsettling accuracy.

The futurist who measured the future

Kurzweil’s work stands out not only for its ambition but for its precision. Rather than offering vague speculation, he produced a set of quantifiable predictions, 147 in total, with a claimed accuracy rate of over 85 percent. These ranged from the growth of mobile computing and cloud-based storage to real-time language translation and the emergence of AI companions.

Since 2012, he has worked at Google as Director of Engineering, contributing to developing natural language understanding systems. He believes is that exponential growth in computing power, driven by Moore’s Law and its successors, will eventually transform our tools and biology.

Reprogramming the body with code

One of Kurzweil’s most controversial but recurring ideas is that human ageing is, at its core, a software problem. He believes that by the early 2030s, advancements in biotechnology and nanomedicine could allow us to repair or even reverse cellular damage.

The logic is straightforward: if ageing results from accumulated biological errors, then precise intervention at the molecular level might prevent those errors or correct them in real time.

AI adoption among US firms with over 250 employees fell to under 12 per cent in August, the largest drop since the Census Bureau began tracking in 2023.

Some of these ideas are already being tested, though results remain preliminary. For now, claims about extending life remain speculative, but the research trend is real.

Kurzweil’s perspective places biology and computation on a converging path. His view is not that we will become machines, but that we may learn to edit ourselves with the same logic we use to program them.

The brain, extended

Another key milestone in Kurzweil’s roadmap is merging biological and digital intelligence. He envisions a future where nanorobots circulate through the bloodstream and connect our neurons directly to cloud-based systems. In this vision, the brain becomes a hybrid processor, part organic, part synthetic.

By the mid-2030s, he predicts we may no longer rely solely on internal memory or individual thought. Instead, we may access external information, knowledge, and computation in real time. Some current projects, such as brain–computer interfaces and neuroprosthetics, point in this direction, but remain in early stages of development.

Kurzweil frames this not as a loss of humanity but as an expansion of its potential.

The singularity hypothesis

At the centre of Kurzweil’s long-term vision lies the idea of a technological singularity. By 2045, he believes AI will surpass the combined intelligence of all humans, leading to a phase shift in human evolution. However, this moment, often misunderstood, is not a single event but a threshold after which change accelerates beyond human comprehension.

Human like robot and artificial intelligence

The singularity, in Kurzweil’s view, does not erase humanity. Instead, it integrates us into a system where biology no longer limits intelligence. The implications are vast, from ethics and identity to access and inequality. Who participates in this future, and who is left out, remains an open question.

Between vision and verification

Critics often label Kurzweil’s forecasts as too optimistic or detached from scientific constraints. Some argue that while trends may be exponential, progress in medicine, cognition, and consciousness cannot be compressed into neat timelines. Others worry about the philosophical consequences of merging with machines.

Still, it is difficult to ignore the number of predictions that have already come true. Kurzweil’s strength lies not in certainty, but in pattern recognition. His work forces a reckoning with what might happen if the current pace of change continues unchecked.

Whether or not we reach the singularity by 2045, the present moment already feels like the future he described.

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Is the world ready for AI to rule justice?

AI is creeping into almost every corner of our lives, and it seems the justice system’s turn has finally come. As technology reshapes the way we work, communicate, and make decisions, its potential to transform legal processes is becoming increasingly difficult to ignore. The justice system, however, is one of the most ethically sensitive and morally demanding fields in existence. 

For AI to play a meaningful role in it, it must go beyond algorithms and data. It needs to understand the principles of fairness, context, and morality that guide every legal judgement. And perhaps more challengingly, it must do so within a system that has long been deeply traditional and conservative, one that values precedent and human reasoning above all else. Jet, from courts to prosecutors to lawyers, AI promises speed, efficiency, and smarter decision-making, but can it ever truly replace the human touch? 

AI is reshaping the justice system with unprecedented efficiency, but true progress depends on whether humanity is ready to balance innovation with responsibility and ethical judgement.

AI in courts: Smarter administration, not robot judges… yet

Courts across the world are drowning in paperwork, delays, and endless procedural tasks, challenges that are well within AI’s capacity to solve efficiently. From classifying cases and managing documentation to identifying urgent filings and analysing precedents, AI systems are beginning to serve as silent assistants within courtrooms. 

The German judiciary, for example, has already shown what this looks like in practice. AI tools such as OLGA and Frauke have helped categorise thousands of cases, extract key facts, and even draft standardised judgments in air passenger rights claims, cutting processing times by more than half. For a system long burdened by backlogs, such efficiency is revolutionary.

Still, the conversation goes far beyond convenience. Justice is not a production line; it is built on fairness, empathy, and the capacity to interpret human intent. Even the most advanced algorithm cannot grasp the nuance of remorse, the context of equality, or the moral complexity behind each ruling. The question is whether societies are ready to trust machine intelligence to participate in moral reasoning.

The final, almost utopian scenario would be a world where AI itself serves as a judge who is unbiased, tireless, and immune to human error or emotion. Yet even as this vision fascinates technologists, legal experts across Europe, including the EU Commission and the OECD, stress that such a future must remain purely theoretical. Human judges, they argue, must always stay at the heart of justice- AI may assist in the process, but it must never be the one to decide it. The idea is not to replace judges but to help them navigate the overwhelming sea of information that modern justice generates.

Courts may soon become smarter, but true justice still depends on something no algorithm can replicate: the human conscience. 

AI is reshaping the justice system with unprecedented efficiency, but true progress depends on whether humanity is ready to balance innovation with responsibility and ethical judgement.

AI for prosecutors: Investigating with superhuman efficiency

Prosecutors today are also sifting through thousands of documents, recordings, and messages for every major case. AI can act as a powerful investigative partner, highlighting connections, spotting anomalies, and bringing clarity to complex cases that would take humans weeks to unravel. 

Especially in criminal law, cases can involve terabytes of documents, evidence that humans can hardly process within tight legal deadlines or between hearings, yet must be reviewed thoroughly. AI tools can sift through this massive data, flag inconsistencies, detect hidden links between suspects, and reveal patterns that might otherwise remain buried. Subtle details that might escape the human eye can be detected by AI, making it an invaluable ally in uncovering the full picture of a case. By handling these tasks at superhuman speed, AI could also help accelerate the notoriously slow pace of legal proceedings, giving prosecutors more time to focus on strategy and courtroom preparation. 

More advanced systems are already being tested in Europe and the US, capable of generating detailed case summaries and predicting which evidence is most likely to hold up in court. Some experimental tools can even evaluate witness credibility based on linguistic cues and inconsistencies in testimony. In this sense, AI becomes a strategic partner, guiding prosecutors toward stronger, more coherent arguments. 

AI is reshaping the justice system with unprecedented efficiency, but true progress depends on whether humanity is ready to balance innovation with responsibility and ethical judgement.

AI for lawyers: Turning routine into opportunity

The adoption of AI and its capabilities might reach their maximum when it comes to the work of lawyers, where transforming information into insight and strategy is at the core of the profession. AI can take over repetitive tasks: reviewing contracts, drafting documents, or scanning case files, freeing lawyers to focus on the work that AI cannot replace, such as strategic thinking, creative problem-solving, and providing personalised client support. 

AI can be incredibly useful for analysing publicly available cases, helping lawyers see how similar situations have been handled, identify potential legal opportunities, and craft stronger, more informed arguments. By recognising patterns across multiple cases, it can suggest creative questions for witnesses and suspects, highlight gaps in the evidence, and even propose potential defence strategies. 

AI also transforms client communication. Chatbots and virtual assistants can manage routine queries, schedule meetings, and provide concise updates, giving lawyers more time to understand clients’ needs and build stronger relationships. By handling the mundane, AI allows lawyers to spend their energy on reasoning, negotiation, and advocacy.

AI is reshaping the justice system with unprecedented efficiency, but true progress depends on whether humanity is ready to balance innovation with responsibility and ethical judgement.

Balancing promise with responsibility

AI is transforming the way courts, prosecutors, and lawyers operate, but its adoption is far from straightforward. While it can make work significantly easier, the technology also carries risks that legal professionals cannot ignore. Historical bias in data can shape AI outputs, potentially reinforcing unfair patterns if humans fail to oversee its use. Similarly, sensitive client information must be protected at all costs, making data privacy a non-negotiable responsibility. 

Training and education are therefore crucial. It is essential to understand not only what AI can do but also its limits- how to interpret suggestions, check for hidden biases, and decide when human judgement must prevail. Without this understanding, AI risks being a tool that misleads rather than empowers. 

The promise of AI lies in its ability to free humans from repetitive work, allowing professionals to focus on higher-value tasks. But its power is conditional: efficiency and insight mean little without the ethical compass of the human professionals guiding it.

Ultimately, the justice system is more than a process. It is about fairness, empathy, and moral reasoning. AI can assist, streamline, and illuminate, but the responsibility for decisions, for justice itself, remains squarely with humans. In the end, the true measure of AI’s success in law will be how it enhances human judgement, not how it replaces it.

So, is the world ready for AI to rule justice? The answer remains clear. While AI can transform how justice is delivered, the human mind, heart, and ethical responsibility must remain at the centre. AI may guide the way, but it cannot and should not hold the gavel.

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The AI gold rush where the miners are broke

The rapid rise of AI has drawn a wave of ambitious investors eager to tap into what many consider the next major economic engine. Capital has flowed into AI companies at an unprecedented pace, fuelled by expectations of substantial future returns.

Yet despite these bloated investments, none of the leading players have managed to break even, let alone deliver a net-positive financial year. Even so, funding shows no signs of slowing, driven by the belief that profitability is only a matter of time. Is this optimism justified, or is the AI boom, for now, little more than smoke and mirrors?

Where the AI money flows

Understanding the question of AI profitability starts with following the money. Capital flows through the ecosystem from top to bottom, beginning with investors and culminating in massive infrastructure spending. Tracing this flow makes it easier to see where profits might eventually emerge.

The United States is the clearest focal point. The country has become the main hub for AI investment, where the technology is presented as the next major economic catalyst and treated by many investors as a potential cash cow.

The US market fuels AI through a mix of venture capital, strategic funding from Big Tech, and public investment. By late August 2025, at least 33 US AI startups had each raised 100 million dollars or more, showing the depth of available capital and investor appetite.

OpenAI stands apart from the rest of the field. Multiple reports point to a primary round of roughly USD 40 billion at a USD 300 billion post-money valuation, followed by secondary transactions that pushed the implied valuation even higher. No other AI company has matched this scale.

Much of the capital is not aimed at quick profits. Large sums support research, model development, and heavy infrastructure spending on chips, data centres, and power. Plans to deploy up to 6 gigawatts of AMD accelerators in 2026 show how funding moves into capacity rather than near-term earnings.

Strategic partners and financiers supply some of the largest investments. Microsoft has a multiyear, multibillion-dollar deal with OpenAI. Amazon has invested USD 4 billion in Anthropic, Google has pledged up to USD 2 billion, and infrastructure players like Oracle and CoreWeave are backed by major Wall Street banks.

AI makes money – it’s just not enough (yet)

Winning over deep-pocketed investors has become essential for both scrappy startups and established AI giants. Tech leaders have poured money into ambitious AI ventures for many reasons, from strategic bets to genuine belief in the technology’s potential to reshape industries.

No matter their motives, investors eventually expect a return. Few are counting on quick profits, but sooner or later, they want to see results, and the pressure to deliver is mounting. Hype alone cannot sustain a company forever.

To survive, AI companies need more than large fundraising rounds. Real users and reliable revenue streams are what keep a business afloat once investor patience runs thin. Building a loyal customer base separates long-term players from temporary hype machines.

OpenAI provides the clearest example of a company that has scaled. In the first half of 2025, it generated around 4.3 billion dollars in revenue, and by October, its CEO reported that roughly 800 million people were using ChatGPT weekly. The scale of its user base sets it apart from most other AI firms, but the company’s massive infrastructure and development costs keep it far from breaking even.

Microsoft has also benefited from the surge in AI adoption. Azure grew 39 percent year-over-year in Q4 FY2025, reaching 29.9 billion dollars. AI services drive a significant share of this growth, but data-centre expansion and heavy infrastructure costs continue to weigh on margins.

NVIDIA remains the biggest financial winner. Its chips power much of today’s AI infrastructure, and demand has pushed data-centre revenue to record highs. In Q2 FY2026, the company reported total revenue of 46.7 billion dollars, yet overall industry profits still lag behind massive investment levels due to maintenance costs and a mismatch between investment and earnings.

Why AI projects crash and burn

Besides the major AI players earning enough to offset some of their costs, more than two-fifths of AI initiatives end up on the virtual scrapheap for a range of reasons. Many companies jumped on the AI wave without a clear plan, copying what others were doing and overlooking the huge upfront investments needed to get projects off the ground.

GPU prices have soared in recent years, and new tariffs introduced by the current US administration have added even more pressure. Running an advanced model requires top-tier chips like NVIDIA’s H100, which costs around 30,000 dollars per unit. Once power consumption, facility costs, and security are added, the total bill becomes daunting for all but the largest players.

Another common issue is the lack of a scalable business model. Many companies adopt AI simply for the label, without a clear strategy for turning interest into revenue. In some industries, these efforts raise questions with customers and employees, exposing persistent trust gaps between human workers and AI systems.

The talent shortage creates further challenges. A young AI startup needs skilled engineers, data scientists, and operations teams to keep everything running smoothly. Building and managing a capable team requires both money and expertise. Unrealistic goals often add extra strain, causing many projects to falter before reaching the finish line.

Legal and ethical hurdles can also derail projects early on. Privacy laws, intellectual property disputes, and unresolved ethical questions create a difficult environment for companies trying to innovate. Lawsuits and legal fees have become routine, prompting some entrepreneurs to shut down rather than risk deeper financial trouble.

All of these obstacles together have proven too much for many ventures, leaving behind a discouraging trail of disbanded companies and abandoned ambitions. Sailing the AI seas offers a great opportunity, but storms can form quickly and overturn even the most confident voyages.

How AI can become profitable

While the situation may seem challenging now, there is still light at the end of the AI tunnel. The key to building a profitable and sustainable AI venture lies in careful planning and scaling only when the numbers add up. Companies that focus on fundamentals rather than hype stand the best chance of long-term success.

Lowering operational costs is one of the most important steps. Techniques such as model compression, caching, and routing queries to smaller models can dramatically reduce the cost of running AI systems. Improvements in chip efficiency and better infrastructure management can also help stretch every dollar further.

Shifting the revenue mix is another crucial factor. Many companies currently rely on cheap consumer products that attract large user bases but offer thin margins. A stronger focus on enterprise clients, who pay for reliability, customisation, and security, can provide a steadier and more profitable income stream.

Building real platforms rather than standalone products can unlock new revenue sources. Offering APIs, marketplaces, and developer tools allows companies to collect a share of the value created by others. The approach mirrors the strategies used by major cloud providers and app ecosystems.

Improving unit economics will determine which companies endure. Serving more users at lower per-request costs, increasing cache hit rates, and maximising infrastructure utilisation are essential to moving from growth at any cost to sustainable profit. Careful optimisation can turn large user bases into reliable sources of income.

Stronger financial discipline and clearer regulation can also play a role. Companies that set realistic growth targets and operate within stable policy frameworks are more likely to survive in the long run. Profitability will depend not only on innovation but also on smart execution and strategic focus.

Charting the future of AI profitability

The AI bubble appears stretched thin, and a constant stream of investments can do little more than artificially extend the lifespan of an AI venture doomed to fail. AI companies must find a way to create viable, realistic roadmaps to justify the sizeable cash injections, or they risk permanently compromising investors’ trust.

That said, the industry is still in its early and formative years, and there is plenty of room to grow and adapt to current and future landscapes. AI has the potential to become a stable economic force, but only if companies can find a compromise between innovation and financial pragmatism. Profitability will not come overnight, but it is within reach for those willing to build patiently and strategically.

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The global struggle to regulate children’s social media use

Finding equilibrium in children’s use of social media

Social media has become a defining part of modern childhood. Platforms like Instagram, TikTok, Snapchat and YouTube offer connection, entertainment and information at an unprecedented scale.

Yet concerns have grown about their impact on children’s mental health, education, privacy and safety. Governments, parents and civil society increasingly debate whether children should access these spaces freely, with restrictions, or not at all.

The discussion is no longer abstract. Across the world, policymakers are moving beyond voluntary codes to legal requirements, some proposing age thresholds or even outright bans for minors.

Supporters argue that children face psychological harm and exploitation online, while critics caution that heavy restrictions can undermine rights, fail to solve root problems and create new risks.

The global conversation is now at a turning point, where choices about social media regulation will shape the next generation’s digital environment.

Why social media is both a lifeline and a threat for youth

The influence of social media on children is double-edged. On the one side, these platforms enable creativity, allow marginalised voices to be heard, and provide educational content. During the pandemic, digital networks offered a lifeline of social interaction when schools were closed.

multiracial group of school kids using touchpads and listening to a teacher during computer class

Children and teens can build communities around shared interests, learn new skills, and sometimes even gain economic opportunities through digital platforms.

On the other side, research has linked heavy use of social media with increased rates of anxiety, depression, disrupted sleep and body image issues among young users. Recommendation algorithms often push sensational or harmful content, reinforcing vulnerabilities rather than mitigating them.

Cyberbullying, exposure to adult material, and risks of predatory contact are persistent challenges. Instead of strengthening resilience, platforms often prioritise engagement metrics that exploit children’s attention and emotional responses.

The scale of the issue is enormous. Billions of children around the world hold smartphones before the age of 12. With digital life inseparable from daily routines, even well-meaning parents struggle to set boundaries.

Governments face pressure to intervene, but approaches vary widely, reflecting different cultural norms, levels of trust in technology firms, and political attitudes toward child protection.

The Australian approach

Australia is at the forefront of regulation. In recent years, the country has passed strong online safety laws, led by its eSafety Commissioner. These rules include mandatory age verification for certain online services and obligations for platforms to design products with child safety in mind.

Most notably, Australia has signalled its willingness to explore outright bans on general social media access for children under 16. The government has pointed to mounting evidence of harm, from cyberbullying to mental health concerns, and has emphasised the need for early intervention.

australian social media laws for children safety

Instead of leaving responsibility entirely to parents, the state argues that platforms themselves must redesign the way they serve children.

Critics highlight several problems. Age verification requires identity checks, which can endanger privacy and create surveillance risks. Bans may also drive children to use less-regulated spaces or fake their ages, undermining the intended protections.

Others argue that focusing only on prohibition overlooks the need for broader digital literacy education. Yet Australia’s regulatory leadership has sparked a wider debate, prompting other countries to reconsider their own approaches.

Greece’s strong position

Last week, Greece reignited the global debate with its own strong position on restricting youth access to social media.

Speaking at the United Nations General Assembly during an event hosted by Australia on digital child safety, PM Kyriakos Mitsotakis said his government was prepared to consider banning social media for children under 16.

sweden social media ban for children

Mitsotakis warned that societies are conducting the ‘largest uncontrolled experiment on children’s minds’ by allowing unrestricted access to social media platforms. He cautioned that while the long-term effects of the experiment remain uncertain, they are unlikely to be positive.

Additionally, the prime minister pointed to domestic initiatives already underway, such as the ban on mobile phones in schools, which he claimed has already transformed the educational experience.

Mitsotakis acknowledged the difficulties of enforcing such regulations but insisted that complexity cannot be an excuse for inaction.

Across the whole world, similar conversations are gaining traction. Let’s review some of them.

National initiatives across the globe

UK

The UK introduced its Online Safety Act in 2023, one of the most comprehensive frameworks for regulating online platforms. Under the law, companies must assess risks to children and demonstrate how they mitigate harms.

Age assurance is required for certain services, including those hosting pornography or content promoting suicide or self-harm. While not an outright ban, the framework places a heavy responsibility on platforms to restrict harmful material and tailor their products to younger users.

EU

The EU has not introduced a specific social media ban, but its Digital Services Act requires major platforms to conduct systemic risk assessments, including risks to minors.

However, the European Commission has signalled that it may support stricter measures on youth access to social media, keeping the option of a bloc-wide ban under review.

Commission President Ursula von der Leyen has recently endorsed the idea of a ‘digital majority age’ and pledged to gather experts by year’s end to consider possible actions.

The Commission has pointed to the Digital Services Act as a strong baseline but argued that evolving risks demand continued vigilance.

EU

Companies must show regulators how algorithms affect young people and must offer transparency about their moderation practices.

In parallel, several EU states are piloting age verification measures for access to certain platforms. France, for example, has debated requiring parental consent for children under 15 to use social media.

USA

The USA lacks a single nationwide law, but several states are acting independently, although there are some issues with the Supreme Court and the First Amendment.

Florida, Texas, Utah, and Arkansas have passed laws requiring parental consent for minors to access social media, while others are considering restrictions.

The federal government has debated child online safety legislation, although political divides have slowed progress. Instead of a ban, American initiatives often blend parental rights, consumer protection, and platform accountability.

Canada

The Canadian government has introduced Bill C-63, the Online Harms Act, aiming to strengthen online child protection and limit the spread of harmful content.

Justice Minister Arif Virani said the legislation would ensure platforms take greater responsibility for reducing risks and preventing the amplification of content that incites hate, violence, or self-harm.

The framework would apply to platforms, including livestreaming and adult content services.

canada flag is depicted on the screen with the program code 1

They would be obliged to remove material that sexually exploits children or shares intimate content without consent, while also adopting safety measures to limit exposure to harmful content such as bullying, terrorism, and extremist propaganda.

However, the legislation also does not impose a complete social media ban for minors.

China

China’s cyberspace regulator has proposed restrictions on children’s smartphone use. The draft rules limit use to a maximum of two hours daily for those under 18, with stricter limits for younger age groups.

The Cyberspace Administration of China (CAC) said devices should include ‘minor mode’ programmes, blocking internet access for children between 10 p.m. and 6 a.m.

Teenagers aged 16 to 18 would be allowed two hours a day, those between eight and 16 just one hour, and those under eight years old only eight minutes.

It is important to add that parents could opt out of the restrictions if they wish.

India

In January, India proposed new rules to tighten controls on children’s access to social media, sparking a debate over parental empowerment and privacy risks.

The draft rules required parental consent before minors can create accounts on social media, e-commerce, or gaming platforms.

Verification would rely on identity documents or age data already held by providers.

Supporters argue the measures will give parents greater oversight and protect children from risks such as cyberbullying, harmful content, and online exploitation.

Singapore

PM Lawrence Wong has warned of the risks of excessive screen time while stressing that children must also be empowered to use technology responsibly. The ultimate goal is the right balance between safety and digital literacy.

In addition, researchers suggest schools should not ban devices out of fear but teach children how to manage them, likening digital literacy to learning how to swim safely. Such a strategy highlights that no single solution fits all societies.

Balancing rights and risks

Bans and restrictions raise fundamental rights issues. Children have the right to access information, to express themselves, and to participate in culture and society.

Overly strict bans can exclude them from opportunities that their peers elsewhere enjoy. Critics argue that bans may create inequalities between children whose families find workarounds and those who comply.

social media ban for under 16s

At the same time, the rights to health, safety and privacy must also be protected. The difficulty lies in striking a balance. Advocates of stronger regulation argue that platforms have failed to self-regulate effectively, and that states must step in.

Opponents argue that bans may create unintended harms and encourage authoritarian tendencies, with governments using child safety as a pretext for broader control of online spaces.

Instead of choosing one path, some propose hybrid approaches: stronger rules for design and data collection, combined with investment in education and digital resilience. Such approaches aim to prepare children to navigate online risks while making platforms less exploitative.

The future of social media and child protection

Looking forward, the global landscape is unlikely to converge on a single model. Some countries will favour bans and strict controls, others will emphasise parental empowerment, and still others will prioritise platform accountability.

What is clear is that the status quo is no longer acceptable to policymakers or to many parents.

Technological solutions will also evolve. Advances in privacy-preserving age verification may ease some concerns, although sceptics warn that surveillance risks will remain. At the same time, platforms may voluntarily redesign products for younger audiences, either to comply with regulations or to preserve trust.

Ultimately, the challenge is not whether to regulate, but how. Instead of focusing solely on prohibition, governments and societies may need to build layered protections: legal safeguards, technological checks, educational investments and cultural change.

If these can align, children may inherit a safer digital world that still allows them to learn, connect and create. If they cannot, the risks of exclusion or exploitation will remain unresolved.

black woman hands and phone for city map location gps or social media internet search in new york

In conclusion, the debate over banning or restricting social media for children reflects broader tensions between freedom, safety, privacy, and responsibility. Around the globe, governments are experimenting with different balances of control and empowerment.

Australia, as we have already shown, represents one of the boldest approaches, while others, from the UK and Greece to China and Singapore, are testing different variations.

What unites them is the recognition that children cannot simply be left alone in a digital ecosystem designed for profit rather than protection.

The next decade will determine whether societies can craft a sustainable balance, where technology serves the needs of the young instead of exploiting them.

In the end, it is our duty as human beings and responsible citizens.

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The quantum internet is closer than it seems

The University of Pennsylvania’s engineering team has made a breakthrough that could bring the quantum internet much closer to practical use. Researchers have demonstrated that quantum and classical networks can share the same backbone by transmitting quantum signals over standard fibre optic infrastructure using the same Internet Protocol (IP) that powers today’s web.

Their silicon photonics ‘Q-Chip’ achieved over 97% fidelity in real-world field tests, showing that the quantum internet does not necessarily require building entirely new networks from scratch.

That result, while highly technical, has far-reaching implications. Beyond physics and computer science, it raises urgent questions for governance, national infrastructures, and the future of digital societies.

What the breakthrough shows

At its core, the Penn experiment achieved three things.

Integration with today’s internet

Quantum signals were transmitted as packets with classical headers readable by conventional routers, while the quantum information itself remained intact.

Noise management

The chip corrected disturbances by analysing the classical header without disturbing the quantum payload. An interesting fact is that the test ran on a Verizon fibre link between two buildings, not just in a controlled lab.

That fact makes the experiment different from earlier advances focusing mainly on quantum key distribution (QKD) or specialised lab setups. It points toward a future in which quantum networking and classical internet coexist and are managed through similar protocols.

Implications for governance and society

Government administration

Governments increasingly rely on digital infrastructure to deliver services, store sensitive records, and conduct diplomacy. The quantum internet could provide secure e-government services resistant to espionage or tampering, protected digital IDs and voting systems, reinforcing democratic integrity, and classified communication channels that even future quantum computers cannot decrypt.

That positions quantum networking as a sovereignty tool, not just a scientific advance.

Healthcare

Health systems are frequent targets of cyberattacks. Quantum-secured communication could protect patient records and telemedicine platforms, enable safe data sharing between hospitals and research centres, support quantum-assisted drug discovery and personalised medicine via distributed quantum computing.

Here, the technology directly impacts citizens’ trust in digital health.

Critical infrastructure and IT systems

National infrastructures, such as energy grids, financial networks, and transport systems, could gain resilience from quantum-secured communication layers.

In addition, quantum-enhanced sensing could provide more reliable navigation independent of GPS, enable early-warning systems for earthquakes or natural disasters, and strengthen resilience against cyber-sabotage of strategic assets.

Citizens and everyday services

For ordinary users, the quantum internet will first be invisible. Their emails, bank transactions, and medical consultations will simply become harder to hack.

Over time, however, quantum-secured platforms may become a market differentiator for banks, telecoms, and healthcare providers.

Citizens and universities may gain remote access to quantum computing resources, democratising advanced research and innovation.

Building a quantum-ready society

The Penn experiment matters because it shows that quantum internet infrastructure can evolve on top of existing systems. For policymakers, this raises several urgent points.

Standardisation

International bodies (IETF, ITU-T, ETSI) will need to define packet structures, error correction, and interoperability rules for quantum-classical networks.

Strategic investment

Countries face a decision whether to invest early in pilot testbeds (urban campuses, healthcare systems, or government services).

Cybersecurity planning

Quantum internet deployment should be aligned with the post-quantum cryptography transition, ensuring coherence between classical and quantum security measures.

Public trust

As with any critical infrastructure, clear communication will be needed to explain how quantum-secured systems benefit citizens and why governments are investing in them.

Key takeaways for policymakers

Quantum internet is governance, not just science. The Penn breakthrough shows that quantum signals can run on today’s networks, shifting the conversation from pure research to infrastructure and policy planning.

Governments should treat the quantum internet as a strategic asset, protecting national administrations, elections, and critical services from future cyber threats.

Early adoption in health systems could secure patient data, telemedicine, and medical research, strengthening public trust in digital services.

International cooperation (IETF, ITU-T, ETSI) will be needed to define protocols, interoperability, and security frameworks before large-scale rollouts.

Policymakers should align quantum network deployment with the global transition to post-quantum encryption, ensuring coherence across digital security strategies.

Governments could start with small-scale testbeds (smart cities, e-government nodes, or healthcare networks) to build expertise and shape standards from within.

Why does it matter?

The University of Pennsylvania’s ‘Q-Chip’ is a proof-of-concept that quantum and classical networks can speak the same language. While technical challenges remain, especially around scaling and quantum repeaters, the political and societal questions can no longer be postponed.

The quantum internet is not just a scientific project. It is emerging as a strategic infrastructure for the digital state of the future. Governments, regulators, and international organisations must begin preparing today so that tomorrow’s networks deliver speed and efficiency, trust, sovereignty, and resilience.

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Hidden psychological risks and AI psychosis in human-AI relationships

For years, stories and movies have imagined humans interacting with intelligent machines, envisioning a coexistence of these two forms of intelligence. What once felt like purely amusing fiction now resonates differently, taking on a troubling shape and even has a name: AI psychosis. 

When it was released in 2013, the film Her seemed to depict a world far removed from reality, an almost unimaginable scenario of human-AI intimacy. In the story, a man falls in love with an AI operating system, blurring the line between companionship and emotional dependence. Without giving too much away, the film’s unsettling conclusion serves as a cautionary lens. It hints at the psychological risks that can emerge when the boundary between human and machine becomes distorted, a phenomenon now being observed in real life under a new term in psychology. 

The cinematic scenario, once considered imaginative, now resonates as technology evolves. AI chatbots and generative companions can hold lifelike conversations, respond with apparent empathy, and mimic an understanding of human emotions. We are witnessing a new kind of unusually intense emotional connection forming between people and AI, with more than 70% of US teens already using chatbots for companionship and half engaging with them regularly.

The newly observed mental health concern raises questions about how these systems influence our feelings, behaviours, and relationships in an era marked by isolation and loneliness. How might such AI interactions affect people, particularly children or those already vulnerable to mental health challenges? 

AI is no longer just a tool- humans are forming deep emotional bonds with artificial intelligence, impacting behavior, decision-making, and the very way we perceive connection.

AI psychosis: myth or reality? 

It is crucial to clarify that AI psychosis is not an official medical diagnosis. Rather, it describes the amplification of delusional thinking facilitated by AI interactions. Yet, it deserves the full attention and treatment focus of today’s psychologists, given its growing impact. It is a real phenomenon that cannot be ignored. 

At its core, AI psychosis refers to a condition in which vulnerable individuals begin to misinterpret machine responses as evidence of consciousness, empathy, or even divine authority. Symptoms reported in documented cases include grandiose beliefs, attachment-based delusions, obsessive over-engagement with chatbots, social withdrawal, insomnia, and hallucinations. Some users have gone so far as to develop romantic or spiritual attachments, convinced that the AI truly understands them or holds secret knowledge.

Clinicians also warn of cognitive dissonance: users may intellectually know that AI lacks emotions, yet still respond as though interacting with another human being. The mismatch between reality and perception can fuel paranoia, strengthen delusions, and in extreme cases lead to medication discontinuation, suicidal ideation, or violent behaviour. Adolescents appear especially susceptible, given that their emotional and social frameworks are still developing. 

Ultimately, AI psychosis does not mean that AI itself causes psychosis. Instead, it acts as a mirror and magnifier, reinforcing distorted thinking patterns in those already predisposed to psychological vulnerabilities.

AI is no longer just a tool- humans are forming deep emotional bonds with artificial intelligence, impacting behavior, decision-making, and the very way we perceive connection.

 The dark side: Emotional bonds without reciprocity

Humans are naturally wired to seek connection, drawing comfort and stability from social bonds that help navigate complex emotional landscapes- the fundamental impulse that has ensured the survival of the human race. From infancy, we rely on responsive relationships to learn empathy, trust, and communication, the skills essential for both personal and societal well-being. Yet, in today’s era of loneliness, technology has transformed how we maintain these relationships. 

As AI chatbots and generative companions grow increasingly sophisticated, they are beginning to occupy roles traditionally reserved for human interaction, simulating empathy and understanding despite lacking consciousness or moral awareness. With AI now widely accessible, users often communicate with it as effortlessly as they would with friends, blending curiosity, professional needs, or the desire for companionship into these interactions. Over time, this illusion of connection can prompt individuals to overvalue AI-based relationships, subtly diminishing engagement with real people and reshaping social behaviours and emotional expectations.

These one-sided bonds raise profound concerns about the dark side of AI companionship, threatening the depth and authenticity of human relationships. In a world where emotional support can now be summoned with a tap, genuine social cohesion is becoming increasingly fragile.

AI is no longer just a tool- humans are forming deep emotional bonds with artificial intelligence, impacting behavior, decision-making, and the very way we perceive connection.

Children and teenagers at risk from AI 

Children and teenagers are among the most vulnerable groups in the AI era. Their heightened need for social interaction and emotional connection, combined with developing cognitive and emotional skills, makes them particularly vulnerable. Young users face greater difficulty distinguishing authentic human empathy from the simulated responses of AI chatbots and generative companions, creating fertile ground for emotional reliance and attachment. 

AI toys and apps have become increasingly widespread, making technology an unfiltered presence in children’s lives. We still do not fully understand the long-term effects, though early studies are beginning to explore how these interactions may influence cognitive, emotional, and social development. From smartphones to home assistants, children and youth are spending growing amounts of time interacting with AI, often in isolation from peers or family. These digital companions are more than just games, because they are beginning to shape children’s social and emotional development in ways we are not yet fully aware of.

The rising prevalence of AI in children’s daily experiences has prompted major AI companies to recognise the potential dangers. Some firms have started implementing parental advisory systems, usage limits, and content monitoring to mitigate the risks for younger users. However, these measures are still inconsistent, and the pace at which AI becomes available to children often outstrips safeguards. 

AI is no longer just a tool- humans are forming deep emotional bonds with artificial intelligence, impacting behavior, decision-making, and the very way we perceive connection.

The hidden risks of AI to adult mental health

Even adults with strong social networks face growing challenges in managing mental health and are not immune to the risks posed by modern technology. In today’s fast-paced world of constant digital stimulation and daily pressures, the demand for psychotherapy is higher than ever. Generative AI and chatbots are increasingly filling this gap, often in ways they were never intended.

The ease, responsiveness, and lifelike interactions of AI can make human relationships feel slower or less rewarding, with some turning to AI instead of seeking professional therapeutic care. AI’s free and widely accessible nature tempts many to rely on digital companions for emotional support, misusing technology designed to assist rather than replace human guidance.

Overreliance on AI can distort perceptions of empathy, trust, and social reciprocity, contributing to social isolation, emotional dependence, and worsening pre-existing mental health vulnerabilities. There have been documented cases of adults developing romantic feelings for AI in the absence of real-life intimacy.

Left unchecked, these dynamics may trigger symptoms linked to AI psychosis, representing a growing societal concern. Awareness, responsible AI design, and regulatory guidance are essential to ensure digital companions complement, rather than replace, human connection and mental health support, safeguarding both individuals and broader social cohesion.

AI is no longer just a tool- humans are forming deep emotional bonds with artificial intelligence, impacting behavior, decision-making, and the very way we perceive connection.

Urgent call for AI safeguards and regulatory action

Alarmingly, extreme cases have emerged, highlighting the profound risks AI poses to its users. In one tragic instance, a teenager reportedly took his life after prolonged and distressing interactions with an AI chatbot, a case that has since triggered legal proceedings and drawn widespread attention to the psychological impact of generative AI on youth. Similar reports of severe anxiety, depression, and emotional dysregulation linked to prolonged AI use underline that these digital companions can have real-life consequences for vulnerable minds.

Such incidents have intensified calls for stricter regulatory frameworks to safeguard children and teenagers. Across Europe, governments are beginning to respond: Italy, for example, has recently tightened access to AI platforms for minors under 14, mandating explicit parental consent before use. These legislative developments reflect the growing recognition that AI is no longer just a technological novelty but directly intersects with our welfare, mental health, and social development.

As AI continues to penetrate every pore of people’s daily lives, society faces a critical challenge: ensuring that technology complements rather than replaces human interaction. Cases of AI-linked distress serve as stark reminders that legislative safeguards, parental involvement, and psychological guidance are no longer optional but urgent necessities to protect a generation growing up in the era of AI.

AI is no longer just a tool- humans are forming deep emotional bonds with artificial intelligence, impacting behavior, decision-making, and the very way we perceive connection.

Towards a safer human-AI relationship

As humans increasingly form emotional connections with AI, the challenge is no longer theoretical but is unfolding in real time. Generative AI and chatbots are rapidly integrating into everyday life, shaping the way we communicate, seek comfort, and manage emotions. Yet despite their widespread use, society still lacks a full understanding of the psychological consequences, leaving both young people and adults at risk of AI-induced psychosis and the growing emotional dependence on digital companions.

Experts emphasise the urgent need for AI psychoeducation, responsible design, and regulatory frameworks to guide safe AI-human interaction. Overreliance on digital companions can distort empathy, social reciprocity, and emotional regulation, the core challenges of interacting with AI. Awareness is critical because recognising the limits of AI, prioritising real human connection, and fostering critical engagement with technology can prevent the erosion of mental resilience and social skills.

Even if AI may feel like ‘old news’ due to its ubiquity, it remains a rapidly evolving technology we do not yet fully understand and cannot yet properly shield ourselves from. The real threat is not the sci-fi visions of AI ruling the world and dominating humanity, but the subtle, everyday psychological shifts it imposes, like altering how we think, feel, and relate to one another. It remains essential to safeguard the emotional health, social cohesion, and mental resilience of people adapting to a world increasingly structured around artificial minds.

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Techno(demo)cracy in action: How a five-day app blackout lit a Gen Z online movement in Nepal

Over the past two weeks, Nepal’s government has sought the right decision to regulate online space. The brought decision prompted a large, youth-led response. A government’s order issued on 4 September blocked access to 26 social platforms, from Facebook, Instagram and YouTube to X and WhatsApp, after the companies failed to register locally under Nepal’s rules for digital services. Within the next five days, authorities lifted the ban, but it was too late: tens of thousands of mostly young Nepalis, organized with VPNs, alternative chat apps and gaming-era coordination tools, forced a political reckoning that culminated in the burning of parts of the parliament complex, the resignation of Prime Minister K.P. Sharma Oli on 9 September, and the appointment of former chief justice Sushila Karki to lead an interim administration.

The social media ban, the backlash, the reversal, and the political break sequence have narrated an unexpected digital governance tale. The on-the-ground reality: a clash between a fast-evolving regulatory push and a hyper-networked youth cohort that treats connectivity as livelihood, classroom, and public square.

The trigger: A registration ultimatum meets a hyper-online society

The ban didn’t arrive from nowhere. Nepal has been building toward platform licensing since late 2023, when the government issued the Social Media Management Directive 2080 requiring platforms to register with the Ministry of Communication and Information Technology (MoCIT), designate a local contact, and comply with expedited takedown and cooperation rules. In early 2025, the government tabled a draft Social Media Bill 2081 in the National Assembly to convert that directive into an effective statute. International legal reviews, including UNESCO-supported March 2025 assessment and an analysis, praised the goal of accountability but warned that vague definitions, sweeping content-removal powers and weak independence could chill lawful speech.

Against that backdrop, the cabinet and courts have put into practice the bill draft. On 28 August 2025, authorities gave major platforms seven days to register with the Ministry of Communication and Information Technology (MoCIT); on 4 September, the telecom regulator moved to block unregistered services. Nepal’s government listed the 26 services covered by the order (including Facebook, Instagram, X, WhatsApp, YouTube, Reddit, Snapchat and others), while TikTok, Viber, Witk, Nimbuzz and Popo Live had registered and were allowed to operate. Two more (Telegram and Global Diary) were under review.

Why did the order provoke such a strong reaction? Considering the baseline, Nepal had about 14.3 million social-media user identities at the start of 2025, roughly 48% of the population, and internet use around 56%. A society in which half the country’s people (and a significantly larger share of its urban youth) rely on social apps for news, school, side-hustles, remittances and family ties is a society in which platform switches are not merely lifestyle choices; they’re digital infrastructure, and it is important to stress the ‘generation gap’ to understand this.

The movement: Gen Z logistics in a blackout world

What made Nepal’s youth mobilisation unusual wasn’t only its size and adaptability, but also the speed and digital literacy with which organisers navigated today’s digital infrastructure; skills that may be less familiar to people who don’t use these platforms daily. However, once the ban hit, the digitally literate rapidly diversified their strategies:

The logistics looked like distributed operations: a core group tasked with sourcing legal and medical aid; volunteer cartographers maintaining live maps of barricades; diaspora Nepalis mirroring clips to international audiences; and moderators trying (often failing) to keep chatrooms free of calls to violence.

 Chart, Plot, Map, Atlas, Diagram

The law: What Nepal is trying to regulate and why it backfired?

The draft Social Media Bill 2081 and the 2023 Directive share a broad structure:

  • Mandatory registration with MoCIT and local point-of-contact;
  • Expedited removal of content deemed ‘unlawful’ or ‘harmful’;
  • Data cooperation requirements with domestic authorities;
  • Penalties for non-compliance and user-level offences include phishing, impersonation and deepfake distribution.

Critics and the youth movement found that friction was not caused by the idea of regulation itself, but by how it was drafted and applied. UNESCO-supported March 2025 assessment and an analysis of the Social Media Bill 2081 flagged vague, catch-all definitions (e.g. ‘disrupts social harmony’), weak due process around takedown orders, and a lack of independent oversight, urging a tiered, risk-based approach that distinguishes between a global platform and a small local forum, and builds in judicial review and appeals. The Centre for Law and Democracy (CLD) analysis warned that focusing policy ‘almost exclusively on individual pieces of content’ instead of systemic risk management would produce overbroad censorship tools without solving the harms regulators worry about.

Regarding penalties, public discussion compared platform fines with user-level sanctions and general cybercrime provisions. Available news info suggests proposed platform-side fines up to roughly USD 17,000 (EUR 15,000) for operating without authorisation, while user-level offences (e.g. phishing, deepfakes, certain categories of misinformation) carry fines up to USD 2,000–3,500 and potential jail terms depending on the offence. 

The demographics: Who showed up, and why them?

Labelling the event a ‘Gen Z uprising’ is broadly accurate, and numbers help frame it. People aged 15–24 make up about one-fifth of Nepal’s population (page 56), and adding 25–29 pushes the 15–29 bracket to roughly a third, close to the share commonly captured by ‘Gen Z’ definitions used in this case (born 1997–2012, so 13–28 in 2025). Those will most likely be online daily, trading on TikTok, Instagram, and Facebook Marketplace, freelancing across borders, preparing for exams with YouTube and Telegram notes, and maintaining relationships across labour migration splits via WhatsApp and Viber. When those rails go down, they feel it first and hardest.

There’s also the matter of expectations. A decade of smartphone diffusion trained Nepali youth to assume the availability of news, payments, learning, work, and diaspora connections, but the ban punctured that assumption. In interviews and livestreams, student voices toggled between free-speech language and bread-and-butter complaints (lost orders, cancelled tutoring, a frozen online store, a blocked interview with an overseas client).

The platforms: two weeks of reputational whiplash

 Person, Art, Graphics, Clothing, Footwear, Shoe, Book, Comics, Publication

The economy and institutions: Damage, then restraint

The five-day blackout blew holes in ordinary commerce: sellers lost a festival week of orders, creators watched brand deals collapse, and freelancers missed interviews. The violence that followed destroyed far more: Gen Z uprising leaves roughly USD 280 million / EUR 240 million in damages, estimates circulating in the aftermath.

On 9 September, the government lifted the platform restrictions; on 13 September, the news chronicled a re-opening capital under interim PM Karki, who spent her first days visiting hospitals and signalling commitments to elections and legal review. What followed mattered: the ban acknowledged, and the task to ensure accountability was left. Here, the event gave legislators the chance to go back to the bill’s text with international guidance on the table and for leaders to translate street momentum into institutional questions.

Bottom line

Overall, Nepal’s last two weeks were not a referendum on whether social platforms should face rules. They were a referendum on how those rules are made and enforced in a society where connectivity is a lifeline and the connected are young. A government sought accountability by unplugging the public square and the public, Gen Z, mostly, responded by building new squares in hours and then spilling into the real one. The costs are plain and human, from the hospital wards to the charred chambers of parliament. The opportunity is also plain: to rebuild digital law so that rights and accountability reinforce rather than erase each other.

If that happens, the ‘Gen Z revolution’ of early September will not be a story about apps. It will be about institutions catching up to the internet, digital policies and a generation insisting they be invited to write the new social contract for digital times, which ensures accountability, transparency, judicial oversight and due process.

When language models fabricate truth: AI hallucinations and the limits of trust

AI has come far from rule-based systems and chatbots with preset answers. Large language models (LLMs), powered by vast amounts of data and statistical prediction, now generate text that can mirror human speech, mimic tone, and simulate expertise, but also produce convincing hallucinations that blur the line between fact and fiction.

From summarising policy to drafting contracts and responding to customer queries, these tools are becoming embedded across industries, governments, and education systems.

As their capabilities grow, so does the underlying problem that many still underestimate. These systems frequently produce convincing but entirely false information. Often referred to as ‘AI hallucinations‘, such factual distortions pose significant risks, especially when users trust outputs without questioning their validity.

Once deployed in high-stakes environments, from courts to political arenas, the line between generative power and generative failure becomes more challenging to detect and more dangerous to ignore.

When facts blur into fiction

AI hallucinations are not simply errors. They are confident statements presented as facts, even based on probability. Language models are designed to generate the most likely next word, not the correct one. That difference may be subtle in casual settings, but it becomes critical in fields like law, healthcare, or media.

One such example emerged when an AI chatbot misrepresented political programmes in the Netherlands, falsely attributing policy statements about Ukraine to the wrong party. However, this error spread misinformation and triggered official concern. The chatbot had no malicious intent, yet its hallucination shaped public discourse.

Mistakes like these often pass unnoticed because the tone feels authoritative. The model sounds right, and that is the danger.

When language models hallucinate, they sound credible, and users believe them. Discover why this is a growing risk.
Image via AI / ChatGPT

Why large language models hallucinate

Hallucinations are not bugs in the system. They are a direct consequence of the way how language models are built. Trained to complete text based on patterns, these systems have no fundamental understanding of the world, no memory of ‘truth’, and no internal model of fact.

A recent study reveals that even the way models are tested may contribute to hallucinations. Instead of rewarding caution or encouraging honesty, current evaluation frameworks favour responses that appear complete and confident, even when inaccurate. The more assertive the lie, the better it scores.

Alongside these structural flaws, real-world use cases reveal additional causes. Here are the most frequent causes of AI hallucinations:

  • Vague or ambiguous prompts
  • Lack of specificity forces the model to fill gaps with speculative content that may not be grounded in real facts.
  • Overly long conversations
  • As prompt history grows, especially without proper context management, models lose track and invent plausible answers.
  • Missing knowledge
  • When a model lacks reliable training data on a topic, it may produce content that appears accurate but is fabricated.
  • Leading or biassed prompts
  • Inputs that suggest a specific answer can nudge the model into confirming something untrue to match expectations.
  • Interrupted context due to connection issues
  • Especially with browser-based tools, a brief loss of session data can cause the model to generate off-track or contradictory outputs.
  • Over-optimisation for confidence
  • Most systems are trained to sound fluent and assertive. Saying ‘I don’t know’ is statistically rare unless explicitly prompted.

Each of these cases stems from a single truth. Language models are not fact-checkers. They are word predictors. And prediction, without verification, invites fabrication.

The cost of trust in flawed systems

Hallucinations become more dangerous not when they happen, but when they are believed.

Users may not question the output of an AI system if it appears polished, grammatically sound, and well-structured. This perceived credibility can lead to real consequences, including legal documents based on invented cases, medical advice referencing non-existent studies, or voters misled by political misinformation.

In low-stakes scenarios, hallucinations may lead to minor confusion. In high-stakes contexts, the same dynamic can result in public harm or institutional breakdown. Once generated, an AI hallucination can be amplified across platforms, indexed by search engines, and cited in real documents. At that point, it becomes a synthetic fact.

Can hallucinations be fixed?

Some efforts are underway to reduce hallucination rates. Retrieval-augmented generation (RAG), fine-tuning on verified datasets, and human-in-the-loop moderation can improve reliability. Still, no method has eliminated hallucinations.

The deeper issue is how language models are rewarded, trained, and deployed. Without institutional norms prioritising verifiability and technical mechanisms that can flag uncertainty, hallucinations will remain embedded in the system.

Even the most capable AI models must include humility. The ability to say ‘I don’t know’ is still one of the rarest responses in the current landscape.

How AI hallucinations mislead users and shape decisions
Image via AI / ChatGPT

Hallucinations won’t go away. Responsibility must step in.

Language models are not truth machines. They are prediction engines trained on vast and often messy human data. Their brilliance lies in fluency, but fluency can easily mask fabrication.

As AI tools become part of our legal, political, and civic infrastructure, institutions and users must approach them critically. Trust in AI should never be passive. And without active human oversight, hallucinations may not just mislead; they may define the outcome.

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